[Technical Field]
[0001] The present invention relates to a multi-input multi-output (MIMO) communication
method in a large-scale antenna system, and more particularly, to an MIMO communication
method that maximizes up·downlink frequency efficiency in a correlated large-scale
MIMO channel environment while requiring feedback of a small amount of channel state
information (CSI).
[Background Art]
[0002] Due to a drastic increase in data traffic, a Beyond-Fourth-Generation (B4G) mobile
communication system requires 10 times an increase in frequency efficiency or more
compared to a 4G system such as Third Generation Partnership Project (3GPP) Long Term
Evolution (LTE). As physical layer techniques necessary to increase frequency efficiency
10 times or more as stated above, network MIMO, interference alignment, relay network,
heterogeneous network, a large-scale MIMO technique, etc. are currently being mentioned.
[0003] The present invention relates to a massive MIMO (or large-scale antenna) system capable
of obtaining a very strong effect as a technique for improving frequency efficiency.
Existing large-scale antenna systems have been limited to a time-division duplex (TDD)
scheme. This is because a frequency-division duplex (FDD) scheme has a problem that
a large-scale antenna transmitter requires as many reference signals (RSs) and radio
resources for CSI feedback as substantially impossible to obtain CSI.
[0004] In addition, since the number of users that can be simultaneously accommodated by
a large-scale transmitting antenna remarkably increases, there occurs a practical
problem in that the complexity of scheduling and precoding calculation becomes very
higher than that of an existing system.
[Disclosure]
[Technical Problem]
[0005] The present invention is directed to providing a multi-input multi-output (MIMO)
transmission method capable of reducing the complexity of scheduling and precoding
calculation even without increasing the amount of radio resources necessary for feedback
of a reference signal (RS) and channel state information (CSI), and appropriate for
a large-scale antenna system.
[0006] The present invention is also directed to providing an MIMO reception method capable
of reducing the complexity of scheduling and precoding calculation even without increasing
the amount of radio resources necessary for feedback of an RS and CSI, and appropriate
for a large-scale antenna system.
[Technical Solution]
[0007] One aspect of the present invention provides a multi-input multi-output (MIMO) transmission
method of a base station in a wireless communication system, the method including:
obtaining statistical channel information on one or more pieces of user equipment
(UE); classifying the one or more pieces of UE into one or more classes and one or
more groups subordinate to the classes on the basis of the statistical channel information;
determining group beamforming matrices for the respective divided groups; performing
group beamforming transmission based on the group beamforming matrices to the pieces
of UE belonging to the groups according to the groups, and obtaining instantaneous
channel information; and scheduling the pieces of UE on the basis of the instantaneous
channel information, and transmitting data to the pieces of UE on the basis of the
scheduling.
[0008] Here, the obtaining of the statistical channel information may include: transmitting
a channel state information (CSI)-reference signal (RS) to the one or more pieces
of UE; and receiving feedback of the statistical channel information measured on the
basis of the CSI-RS from the one or more pieces of UE.
[0009] Here, the obtaining of the statistical channel information may include measuring
the statistical channel information on the basis of sounding RSs (SRSs) received from
the one or more pieces of UE.
[0010] Here, the statistical channel information may include at least one of transmit correlation
matrices, eigenvalues of the transmit correlation matrices, eigenvectors of the transmit
correlation matrices, angle spreads (ASs), angles of departure (AoDs), and one or
more long-term precoding matrix indicators (PMIs) that mean statistical channel information
and are selected from a fixed codebook.
[0011] Here, the classifying of the one or more pieces of UE may include classifying pieces
of UE having transmit correlation matrices similar to each other into one group. Here,
the classifying the one or more pieces of UE may include classifying pieces of UE
having valid eigenvectors of transmit correlation matrices similar to each other into
one group, and classifying groups having high orthogonality between valid eigenvectors
of transmit correlation matrices into one class.
[0012] Here, the determining of the group beamforming matrices may include determining the
group-specific group beamforming matrices to be quasi-orthogonal to each other on
the basis of the statistical channel information and a one-ring channel model. At
this time, the group beamforming matrices may be determined to be quasi-orthogonal
to each other through block diagonalization (BD).
[0013] Here, the obtaining of the instantaneous channel information may include: transmitting
CSI-RSs to which the group-specific beamforming matrices have been applied or CSI-RSs
to which the group-specific beamforming matrices have not been applied to the pieces
of UE; and receiving feedback of the instantaneous channel information measured on
the basis of the CSI-RSs to which the group-specific beamforming matrices have been
applied or the CSI-RS to which the group-specific beamforming matrices have not been
applied from the pieces of UE.
[0014] Here, the obtaining of the instantaneous channel information may include measuring
the instantaneous channel information on the basis of SRSs received from the pieces
of UE.
[0015] Here, the instantaneous channel information may include at least one of information
on dominant eigenvector matrices of transmit correlation matrices, adaptive codebook
indices, fixed codebook indices, single user channel quality indicators (SU-CQIs),
and multi-user CQIs (MU-CQIs), and at least one of group interference measurement
information and rank information (RI). Here, the MIMO transmission method may further
include notifying, at the base station, the pieces of UE of whether to operate in
a SU-MIMO mode or a MU-MIMO mode, wherein, when the base station and the pieces of
UE operate in the SU-MIMO mode, the channel information may include the SU-CQIs, and
when the base station and the pieces of UE operate in the MU-MIMO mode, the channel
information may include at least one of the MU-CQIs according to the pieces of UE.
[0016] Here, the scheduling of the pieces of UE on the basis of the instantaneous channel
information may include scheduling, at the base station, the pieces of UE belonging
to the respective groups and the respective classes independently according to the
groups and the classes.
[0017] Another aspect of the present invention provides an MIMO reception method of UE in
a wireless communication system, the method including: receiving a signal to which
a group beamforming matrix for a group including the UE has been applied; generating
instantaneous channel information using an RS to which the group beamforming matrix
has been applied or an RS to which the group beamforming matrix has not been applied;
and feeding back the instantaneous channel information to a base station.
[0018] Here, the MIMO reception method may further include feeding back, at the UE, statistical
channel information measured on the basis of a CSI-RS received from the base station
to the base station, wherein the group beamforming matrix may be determined using
the statistical channel information.
[0019] Here, the group beamforming matrix may be determined on the basis of an SRS transmitted
by the UE.
[0020] Here, the instantaneous channel information may include at least one of information
on a dominant eigenvector matrix of a transmit correlation matrix, an adaptive codebook
index, a fixed codebook index, a SU-CQI, and a MU-CQI, and at least one of group interference
measurement information and RI.
[0021] Here, the MIMO reception method may further include notifying, at the base station,
the UE of whether to operate in a SU-MIMO mode or a MU-MIMO mode, wherein, when the
base station and the UE operate in the SU-MIMO mode, the instantaneous channel information
may include the SU-CQI, and when the base station and the UE operate in the MU-MIMO
mode, the instantaneous channel information may include the at least one MU-CQI according
to the UE.
[0022] Here, pieces of UE having statistical channel information-based transmit correlation
matrices similar to each other may be classified into one group. Here, pieces of UE
having valid eigenvectors of transmit correlation matrices similar to each other may
be classified into one group, and groups having high orthogonality between valid eigenvectors
of transmit correlation matrices may be classified into one class.
[Advantageous Effects]
[0023] In a multi-input multi-output (MIMO) transmission and reception method according
to the present invention, pieces of user equipment (UE) are classified into groups
having quasi-orthogonality between themselves using similarity between transmit correlation
matrices (or channel covariance matrices) of the pieces of UE, and the groups are
caused to operate as virtual sectors, so that scheduling can be performed independently
according to the groups.
[0024] In the present invention, since not all pieces of UE but some pieces of UE can be
independently scheduled according to the aforementioned concept of virtual sectors
(i.e., group-specific independent scheduling), it is possible to remarkably reduce
system complexity for performing multi-user (MU)-MIMO.
[0025] Also, in the present invention, group-specific reference signals (GRSs) are introduced,
and in practice, it is possible to introduce MU-channel quality indicators (CQIs)
through the GRSs, so that MU-MIMO can be effectively performed.
[0026] In addition, when the MIMO transmission and reception method of the present invention
is used, a specific adaptive codebook rather than a fixed codebook may be used for
UE (or a UE group), and thus it is possible to ensure better performance than a fixed
codebook such as Long Term Evolution (LTE).
[0027] Furthermore, in the present invention, it is possible to reduce a load of RSs and
UE feedback resources of a frequency-division duplex (FDD)-based large-scale antenna
system to a practicable level due to GRSs and an adaptive codebook.
[Description of Drawings]
[0028]
FIG. 1 is a conceptual diagram of spatial division among user groups in a multi-input
multi-output (MIMO) transmission and reception method according to the present invention.
FIG. 2 is a conceptual diagram showing an example of distribution of locations of
pieces of user equipment (UE) in one sector of a 3-sector base station and distribution
of radiuses of scatterers.
FIG. 3 is a flowchart illustrating a frequency-division duplex (FDD)-based downlink
MIMO transmission and reception method according to the present invention.
FIG. 4 is a conceptual diagram showing an example of UE grouping in a MIMO transmission
and reception method according to the present invention.
FIG. 5 is a conceptual diagram of block diagonalization (BD) in a MIMO transmission
and reception method according to the present invention.
FIG. 6 is a conceptual diagram of an example of allocation of channel state information
(CSI) measurement resource or scheduling resource candidates according to the present
invention.
FIG. 7 is a conceptual diagram of a three-dimensional (3D) beamforming technique.
* Description of Major Symbols in the above Figures
[0029]
10: Large-scale antenna array
10-1 to 10-M: Antenna elements
20-1 to 20-K: pieces of UE
30-1 to 30-G: Groups
[Modes of the Invention]
[0030] While the present invention can be modified in various ways and take on various alternative
forms, specific embodiments thereof are shown in the drawings and described in detail
below as examples.
[0031] However, there is no intent to limit the present invention to the particular forms
disclosed. On the contrary, the present invention is to cover all modifications, equivalents,
and alternatives falling within the spirit and scope of the appended claims.
[0032] The terminology used herein to describe embodiments of the invention is not intended
to limit the scope of the invention. Singular forms include plural forms unless the
context clearly indicates otherwise. It will be further understood that the term "comprises,"
"comprising," "includes," or "including," when used herein, specifies the presence
of stated features, integers, steps, operations, elements, components, or groups thereof,
but do not preclude the presence or addition of one or more other features, integers,
steps, operations, elements, components, or groups thereof.
[0033] Unless otherwise defined, all terms including technical and scientific terms used
herein are to be interpreted as is customary in the art to which the present invention
belongs. It will be further understood that terms as those defined in a generally
used dictionary are to be interpreted as having meanings in accordance with the meanings
in the context of the relevant art and not in an idealized or overly formal sense
unless clearly so defined herein.
[0034] The term "user equipment (UE)" used herein may be referred to as a mobile station
(MS), user terminal (UT), wireless terminal, access terminal (AT), terminal, subscriber
unit, subscriber station (SS), wireless device, wireless communication device, wireless
transmit/receive unit (WTRU), mobile node, mobile, or other terms. Various embodiments
of UE may include a cellular phone, a smart phone having a wireless communication
function, a personal digital assistant (PDA) having a wireless communication function,
a wireless modem, a portable computer having a wireless communication function, a
photographing apparatus such as a digital camera having a wireless communication function,
a gaming apparatus having a wireless communication function, a music storing and playing
appliance having a wireless communication function, an Internet home appliance capable
of wireless Internet access and browsing, and also portable units or UE having a combination
of such functions, but are not limited to these.
[0035] The term "base station" used herein generally denotes a fixed or moving point that
communicates with UE, and may be a common name for Node-B, evolved Node-B (eNode-B),
base transceiver system (BTS), access point, relay, femto-cell, and so on.
[0036] Hereinafter, exemplary embodiments of the present invention will be described in
detail with reference to the appended drawings. To aid in understanding the present
invention, like numbers refer to like elements throughout the description of the figures,
and the description of the same element will not be reiterated.
Summary of MIMO Transmission and Reception Method According to Present Invention
[0037] A multi-input multi-output (MIMO) transmission and reception method according to
the present invention is applied to the uplink and downlink of cellular communication.
[0038] In description below, it is assumed that one cell consists of a base station having
M antennas and K users (pieces of UE) each having N antennas, and transmitting antenna
correlation of each piece of UE is high (i.e., an angle spread (AS) is small). For
example, in a channel environment in which downlink urban macro and line of sight
(LOS) components are strong, transmitting antenna correlation is high.
[0039] For convenience, it is assumed that the K users can be classified into G groups that
can be spatially separated according to similarity of transmitting antenna correlation,
and each group includes K' users. For convenience, it is assumed that all the groups
consist of the same number of users.
[0040] A channel model taken into consideration in the present invention is Equation 1 below.

[0041] Here,
HW is an independently and identically distributed (i.i.d.) channel matrix,
RT is a transmit correlation matrix, and
RR is a receive correlation matrix. For convenience, a so-called one-ring channel model
is assumed in multi-user (MU)-MIMO, and it is assumed that
RR =
I, that is, there is no receive correlation.
[0042] A transmission signal model proposed by the present invention is Equation 2 below.

[0043] Here,
B is a beamforming matrix based on statistical characteristics of a channel,
P is a precoding matrix based on channel information
H̃ = HB, and
d is a data symbol vector.
[0044] A reception signal model proposed by the present invention is Equation 3 below.

[0045] Here,
z denotes a noise signal, and
HB can be presented by Equation 4 below.

[0046] Here,
Hg is an overall channel matrix of group g, and
Bg ∈
CM×b is a beamforming matrix of group g. In Equation 4 above, the approximate equality
sign corresponds to a case in which the condition of Equation 5 below is satisfied.

[0047] Then,
P =
diag(P1, ···,
PG)
.
[0048] The core of the MIMO transmission and reception method proposed in the present invention
is to set
Bg to satisfy the condition and schedule users having such a beamforming matrix for
the same time.
[0049] FIG. 1 is a conceptual diagram of spatial division among user groups in a MIMO transmission
and reception method according to the present invention.
[0050] Referring to FIG. 1, a base station has a large-scale antenna array 10 consisting
of M antenna elements 10-1, 10-2, ..., and 10-M. There are K pieces of active UE 20-1,
20-2, ..., and 20-K, and the K pieces of active UE are classified into G groups. For
example, a first group 30-1 includes the first piece of UE 20-1 and the second piece
of UE 20-2, and a second group 30-2 includes the third piece of UE 20-3. A G
th group 30-G includes the (K-1)
th piece of UE 20-(K-1) and the K
th piece of UE 20-K.
[0051] Here, a channel matrix of the first group 30-1 consisting of the first piece of UE
20-1 and the second piece of UE 20-2 corresponds to
H1.
[0052] Next, description will be made regarding dimensional reduction of an instantaneous
channel matrix that can be obtained using the MIMO transmission and reception method
proposed in the present invention. First, it is assumed that K users are indexed as
Equation 6 below to present group indices. g
k denotes an index of a k
th piece of UE in group g.

[0053] Meanwhile, it is effective to use a receive beamforming or combining matrix of a
receiver when receive correlation is high. Then, it is possible to know that dimensions
of an instantaneous channel matrix to be fed back to a base station by a user according
to the transmission and reception method of the present invention is reduced as presented
in Equation 7 below.

[0054] Here,
Cgk ∈
Cc×N is a receive combining matrix of a user
gk, and
N ≥
c, M ≥
b. In particular, since it is expected that a case of
N>>c, M>>b will frequently occur in a large-scale antenna system, it is possible to remarkably
reduce dimensions of an instantaneous channel matrix
H̃gk that a user should feed back to a base station. In addition, each group performs
precoding on the basis of
H̃g, the complexity of precoding matrix calculation also is significantly reduced. It
is possible to know that the effects are obtained in a single user (SU)-MIMO system
as well.
[0055] Next, assuming for convenience that users of group g have the same transmit correlation
matrix, various forms that
Bg has according to statistical information and an antenna arrangement given to a base
station will be described.
A. Case of Base Station Knowing Transmit Correlation Matrix Information on Each Group
[0056] Eigenvectors of a transmit correlation matrix of group g can be fed back from a user
or estimated using an uplink pilot signal. A transmit correlation matrix is statistical
information, and thus a base station may receive feedback of the corresponding information
at enough time intervals. In this case, it is possible to obtain
Bg in a variety of the following forms.
[0057] Bg may be a matrix consisting of as many eigenvectors as the number of meaningful ranks
of the transmit correlation matrix of group g.
[0058] When L subarrays are arranged at enough intervals as a large-scale antenna array,
the transmit correlation matrix of group g becomes a block diagonal matrix. In this
case, channel information that each user should feed back becomes an eigenvector of
a block matrix disposed on a diagonal, and thus a load of feedback can be remarkably
reduced. A distributed antenna system can be understood as corresponding to a special
case of the large-scale antenna array divided into the L subarrays.
[0059] When a practical rank (i.e., a rank excluding too small eigenvalues) of the transmit
correlation matrix of group g is large, in order to make transmit correlation matrices
of groups orthogonal to each other, a sufficient dimension of
HgBg matrix can be ensured by reducing the number of groups, and then inter-group interference
can be removed through block diagonalization (BD). Alternatively, it is possible to
control inter-group interference by designing
Bg of each group to have b that is smaller than a meaningful rank of the transmit correlation
matrix of group g.
B. Case of Base Station Not Knowing Transmit Correlation Matrix Information on Each
Group
[0060] It is possible to have
Bg in the following form.
[0061] Virtual sectors can be made using predetermined fixed beamforming to spatially separate
user groups. Here, an example of fixed beamforming can be the Third Generation Partnership
Project (3GPP) Long Term Evolution (LTE) Rel. 10 codebook based on unitary beamforming,
a user can feed back a single beam index and a plurality of beam indices of strong
signals among received beams to a base station, and the base station should be able
to appropriately perform scheduling using the corresponding information so that there
is little interference between user groups.
[0062] The user may feedback a transmission angle spread (AS) and angle of departure (AoD)
extracted from a transmit correlation matrix to the base station.
[0063] The core of scheduling proposed in the present invention is to make
HB as close to a block diagonal matrix as possible. Thus, the scheduling generally includes
two steps.
[0064] In a first step, groups are made using information such as eigenvectors or beam indices
of transmit correlation matrices of all users, so that
HB becomes a block diagonal matrix. For this reason, the respective groups independently
perform intra-group scheduling without causing significant interference to each other.
At this time, a base station may have to signal beamforming matrices of the respective
groups or respective users to the users.
[0065] In a second step, scheduling is performed using an instantaneous channel matrix
H̃gk fed back by users in a group, and spatial multiplexing is performed through precoding.
[0066] Due to the aforementioned two-stage scheduling, the complexity of scheduling and
precoding calculation of a system can be remarkably reduced.
[0067] Downlink pilots can have two forms.
[0068] A first form is a pilot in a general form transmitted in all directions of a sector.
For example, the first form may be in accordance with a pilot signal having the same
structure as 3GPP LTE.
[0069] A second form is a pilot signal multiplied by a beamforming matrix. In case of fixed
beamforming, the second form is a pilot form necessary for a user to transmit a beam
index.
[0070] A large-scale MIMO uplink has a problem in that a dimension of a reception channel
matrix is large, and the calculation complexity of a receiving algorithm exponentially
increases. The present invention shows that an uplink MU-MIMO reception method for
solving this problem can be obtained by applying the principle of the above-described
downlink MU transmission method to a reception method. In other words, since a base
station knows all channel information through an uplink pilot, it is possible to significantly
reduce dimensions of a reception vector of each group and lower the calculation complexity
of a receiving algorithm to a practicable level when reception beamforming is performed
to remove inter-group interference through an appropriate scheduling.
FDD-Based Downlink MIMO Transmission and Reception Method According to Present Invention
[0071] FIG. 2 is a conceptual diagram showing an example of distribution of locations of
pieces of UE in one sector of a 3-sector base station and distribution of radiuses
of scatterers. The present invention will be described below with reference to FIG.
2 in parallel.
A) Entire Procedure
[0072] FIG. 3 is a flowchart illustrating an FDD-based downlink MIMO transmission and reception
method according to the present invention.
[0073] Referring to FIG. 3, an FDD-based downlink MIMO transmission and reception method
according to the present invention is a MIMO transmission method of a base station
in a wireless communication system, and may include: a step of obtaining statistical
channel information on one or more pieces of UE (S310); a step of classifying the
one or more pieces of UE into one or more classes and one or more groups subordinate
to the classes on the basis of the statistical channel information (S320); a step
of determining group beamforming matrices for the respective divided groups (S330);
a step of performing group beamforming transmission based on the group beamforming
matrices to the pieces of UE belonging to the groups according to the groups, and
obtaining instantaneous channel information (S340); and a step of scheduling the pieces
of UE on the basis of the instantaneous channel information and transmitting data
to the pieces of UE on the basis of the scheduling (S350).
[0074] The respective steps will be described in brief below, and operation and elements
constituting each step will be described later in sections B) to F). Also, a fixed
codebook-based procedure and an adaptive codebook-procedure will be described later.
[0075] In step S310, a base station can receive feedback of statistical channel information
from one or more pieces of UE or measure the statistical channel information through
an uplink sounding reference signal (SRS). The statistical channel information can
include at least one of transmit correlation matrices, eigenvalues of the transmit
correlation matrices, eigenvectors of the transmit correlation matrices, ASs, AoDs,
and one or more long-term precoding matrix indicators (PMIs) that mean statistical
channel information and are selected from a fixed codebook.
[0076] Statistical channel information can be obtained when a base station sets and transmits
a channel state information (CSI)-reference signal (RS) to the pieces of UE and receives
feedback of results measured through the received CSI-RS, or can be measured by the
base station through an uplink SRS transmitted by UE. Respective pieces of information
included in the statistical channel information will be described later.
[0077] In step S320, the base station can classify the one or more pieces of UE into one
or more classes and one or more groups subordinate to the classes on the basis of
the statistical channel information. According to a procedure selected from a fixed
codebook-based procedure and an adaptive codebook-based procedure, step S320 can be
configured differently. For example, according to the fixed codebook-based procedure,
the pieces of UE feed back long-term PMIs selected from a fixed codebook as statistical
channel information, which means that the pieces of UE designate classes and groups
to which the pieces of UE themselves will belong in the first instance. At this time,
the base station may ignore the class and the group selected by the pieces of UE,
select optimum classes and groups in the second instance, and notify the pieces of
UE of the selected optimum classes and groups. The detailed procedure based on a fixed
codebook will be described later. Also, statistical channel information and group/class
classification will be described later in section B).
[0078] In step S330, group beamforming matrices for the respective divided groups are determined.
[0079] At this time, in the fixed codebook-based procedure, group beamforming matrices are
selected from among previously generated group beamforming matrices. On the other
hand, in the adaptive codebook-based procedure, group beamforming matrices are generated
on the basis of the received statistical channel information. Generation of group
beamforming matrices will be described later in section C).
[0080] In step S340, the base station performs group beamforming transmission based on the
group beamforming matrices to the pieces of UE belonging to the groups according to
the groups. The base station can receive feedback of instantaneous channel information
measured from CSI-RS signals to which group beamforming has been applied or CSI-RS
signals to which group beamforming has not been applied, or can measure the instantaneous
channel information through SRSs received from the pieces of UE. RSs of the present
invention will be described later in section D).
[0081] Here, the instantaneous channel information can be fed back to the base station using
an implicit feedback scheme or an explicit feedback scheme.
[0082] The instantaneous channel information may include at least one of information on
dominant eigenvector matrices of the transmit correlation matrices, adaptive codebook
indices, fixed codebook indices, SU-channel quality indicators (SU-CQIs), and MU-CQIs,
and at least one of group interference measurement information and rank information
(RI).
[0083] A detailed feedback method of instantaneous channel information will be described
later with the fixed codebook-based procedure and the adaptive codebook-based procedure.
[0084] Lastly, in step S350, the base station selects pieces of UE to service according
to the respective groups through instantaneous channel information fed back from the
pieces of UE and a scheduling algorithm, and transmits a control signal and data.
[0085] At this time, the base station can transmit demodulation group-specific RSs (DM-GRSs)
to which group-specific beamforming matrices are applied to the pieces of UE with
the data, and the pieces of UE can demodulate the data using the DM-GRSs.
[0086] In the FDD-based downlink MIMO transmission and reception method according to the
present invention, a fixed codebook-based MIMO transmission method of a base station
and an adaptive codebook-based MIMO transmission method of a base station will be
described in further detail below. Although the MIMO transmission methods are described
from the viewpoint of a base station, MIMO reception methods of UE corresponding to
the MIMO transmission methods can also be described by inference.
[0087] First, the fixed codebook-based procedure will be described.
[0088] An example of operation based on a fixed codebook of the FDD-based downlink MIMO
transmission method according to the present invention can include a step of transmitting
a CSI-RS (1-1), a step of receiving information indicating a class and a group determined
through the CSI-RS and to which each of one or more pieces of UE belongs from the
piece of UE (1-2), a step of notifying the pieces of UE of the classes and the groups
of the pieces of UE determined on the basis of the information (1-3), a step of generating
or selecting group-specific beamforming matrices on the basis of the determined classes
and groups (1-4), a step of transmitting CSI-RSs to which the group-specific beamforming
matrices are applied to the respective groups (1-5), a step of receiving channel information
measured on the basis of the CSI-RSs to which the group-specific beamforming matrices
are applied from the pieces of UE (1-6), and a step of scheduling the pieces of UE
on the basis of the channel information, and transmitting data to the pieces of UE
on the basis of the scheduling (1-7). Description will be made below under the assumption
that channel information feedback from UE is implicit channel feedback.
[0089] The respective steps will be described in further detail below.
[0090] In step 1-1, a base station sets and transmits a general CSI-RS to pieces of UE.
Here, the general CSI-RS may denote a CSI-RS to which no group-specific beamforming
matrix to be described later has not been applied.
[0091] In step 1-2, the pieces of UE select optimum classes and groups on the basis of the
CSI-RS transmitted by the base station, and feed back information indicating the selected
classes and groups to the base station. The information indicating the classes and
groups can be configured to indicate one or more classes and groups. In step S310,
the pieces of UE can select

that maximizes

or the average

of N slots as a long-term PMI using the CSI-RS transmitted by the base station, and
feed back the long-term PMI to the base station as information indicating classes
and groups. The long-term PMI denotes statistical channel information on UE. Since
a class and a group of UE change very slowly according to movement of the UE, the
long-term PMI may be fed back for a very long term or fed back when the long-term
PMI exceeds a specific threshold value, that is, only when there is a change. When
p long-term PMIs are fed back, for example, p long-term PMIs in decreasing order of
the selection reference values are fed back.
[0092] Meanwhile, in order for UE to transmit information indicating a class and a group
as a long-term PMI, the base station can provide information on a used fixed codebook
to the UE. For example, when various fixed codebooks are used according to the number
and a pattern of antennas of the base station and a type (urban/rural and macro/micro)
of the base station, the base station can provide information on the fixed codebooks
in use to the UE. Such information on a fixed codebook can be transferred to the UE,
for example, using a physical broadcast channel (PBCH).
[0093] In step 1-3, the base station classifies the pieces of UE according to classes and
groups on the basis of the information fed back from the pieces of UE. In this process,
classes and groups different from the classes and groups reported by the pieces of
UE in step 1-2 can be assigned to the pieces of UE through class and group rearrangement
of the base station. Thus, when the pieces of UE have fed back information indicating
several classes and groups in step 1-2, or classes and groups to which the pieces
of UE belong are changed through class rearrangement of the base station, the base
station notifies the corresponding pieces of UE of the determined classes and groups
of the pieces of UE through a control signal.
[0094] In step 1-4, the base station generates or selects group-specific beamforming matrices
on the basis of the determined classes and groups. At this time, the base station
may generate optimum beamforming matrices for the respective classified groups, or
select optimum beamforming matrices from among previously generated beamforming matrices
according to the groups. In step 1-5, the base station transmits CSI-RSs to which
the group-specific beamforming matrices are applied to the respective groups.
[0095] In step 1-6, the pieces of UE measure channel information using the CSI-RSs transmitted
by the base station and to which the group-specific beamforming matrices are applied,
and report the channel information to the base station. Here, the channel information
can include at least one of SU-CQIs and MU-CQIs, short-term PMIs, and rank indicators
(RIs).
[0096] A MU-CQI is calculated as a self-signal-to-interference plus noise ratio (SINR).
Here, interference within the same group and interference from other groups all are
calculated and reflected in an interference signal. Basically, the pieces of UE calculate
interference assuming that all beams of all the groups are used. This is possible
because the pieces of UE know their channels and beams

of all the groups. Meanwhile, when the number of users in a cell is small, a control
signal is necessary for the base station to reduce the number of beams used by each
group and notify the pieces of UE of the corresponding beam indices. At this time,
the base station notifies the pieces of UE in the corresponding groups of group-specific
used beams, so that the pieces of UE accurately estimate interference of other groups
and calculate MU-CQIs. Also, since the pieces of UE simultaneously feed back SU-CQIs
and MU-CQIs, the base station may dynamically select and schedule the pieces of UE,
or notify the pieces of UE of whether to operate in a SU-MIMO mode or a MU-MIMO mode
using a control signal, so that the pieces of UE feed back the SU-CQIs or one or more
MU-CQIs according to the respective pieces of UE.
[0097] Lastly, in step 1-7, the base station finds an optimum UE combination on the basis
of the channel information, schedules the pieces of UE, and transmits data to the
pieces of UE on the basis of the scheduling.
[0098] When a base station performs optimum scheduling on the basis of MU-CQIs of UE, selected
pieces of UE have little inter-group interference. Thus, pieces of UE selected from
different groups can demodulate their data through DM-GRSs that are quasi-orthogonal
to each other and use the same resources. Interference between different groups can
be additionally reduced using a quasi-orthogonal sequence, and interference between
different users in the same group can be removed using an orthogonal sequence.
[0099] Meanwhile, a design standard for generating a fixed codebook consisting of the long-term
PMI mentioned in step 1-2 and the short-term PMI mentioned in step 1-6 is as follows.
First, description will be made under the assumption of a co-polarization antenna.
[0100] A fixed codebook consists of T classes and G groups belonging to each class. The
respective classes may have different number of groups. A matrix

forming eigenvector spaces of groups constituting one class is made using the one-ring
channel model. Parameters necessary to this end are ASs and AoDs of the groups. An
AS of a group is determined by AS distribution of UE in a cell, each group AoD is
determined comprehensively according to the following two standards.
- Eigenvector spaces of respective groups should be as orthogonal as possible. This
is intended to reduce inter-group interference.
- AoDs of respective groups should be disposed as equally as possible. This is intended
to minimize a disagreement between an eigenvector space of UE and an eigenvector space
of a group to which the UE belongs.
[0101] A BD scheme is applied to class-specific

sets obtained using the aforementioned method, and thereby a beamforming matrix

constituting a codebook is generated. In this way, inter-group interference can be
further reduced. Here, the long-term PMI denotes an index (t, g) of

and the short-term PMI denotes one or a plurality of column vectors in

corresponding to UE according to a transmission rank (RI).
[0102] The codebook has been described above under the assumption of a co-polarization antenna.
On the other hand, in case of a cross-polarization antenna, two polarization antenna
arrays are independently processed to have M/2 beam vectors per one polarity, and
it is possible to configure a long-term PMI and a short-term PMI in the same way as
described above. Also, like in the LTE scheme, a co-phasing parameter can be prepared
to induce constructive combining between beams of two polarization antennas. However,
in this case, UE should accurately estimate at least interference of other users in
a group to calculate a MU-CQI. To this end, the UE calculates a plurality of MU-CQIs
according to the number of cases of co-phasing parameters of the other users in the
group, and feeds back co-phasing parameters to the respective users, so that a base
station schedules users in the group. At this time, the UE can reduce the number of
feedback bits by transmitting a first MU-CQI and only offsets of the other MU-CQIs
with respect to the first MU-CQI.
[0103] The above procedure has been described on the basis of an existing CSI-RS. Meanwhile,
an existing CSI-RS can be replaced by a long-term CSI-RS and a short-term CSI-GRS.
Here, the CSI-GRS is a GRS beamformed using

and is transmitted by sharing the same resources between groups, thereby reducing
consumption of RS resources. The long-term CSI-RS is intended for UE to estimate and
feed back a long-term PMI, and the short-term CSI-GRS is intended to feed back a short-term
PMI.
[0104] Next, the adaptive codebook-based procedure will be described.
[0105] An example of operation based on an adaptive codebook of the FDD-based downlink MIMO
transmission method according to the present invention can include: a step of obtaining
statistical channel information on one or more pieces of UE (2-1); a step of classifying
the one or more pieces of UE into classes and groups on the basis of the statistical
channel information, and generating group-specific beamforming matrices (2-2); a step
of transmitting CSI-RSs to which the group-specific beamforming matrices are applied
to the respective groups (2-3); a step of receiving channel information measured on
the basis of the CSI-RSs to which the group-specific beamforming matrices are applied
from the pieces of UE (2-4); and a step of scheduling the pieces of UE on the basis
of the channel information, and transmitting data to the pieces of UE on the basis
of the scheduling (2-5).
[0106] The respective steps will be described in further detail below.
[0107] In step 2-1, a base station obtains statistical channel information on one or more
pieces of UE. At this time, the base station can measure the statistical channel information
using SRSs transmitted by the pieces of UE, or transmit long-term CSI-RSs to the pieces
of UE and receive feedback of the statistical channel information measured by the
pieces of UE. An example of the statistical channel information may be eigenvector
matrices of the pieces of UE. Alternatively, another example of the statistical channel
information may be ASs and AoDs of the pieces of UE.
[0108] In step 2-2, the base station classifies the pieces of UE according to classes and
groups using the statistical channel information obtained in step 2-1, and can generate
optimal beamforming matrices

for the respective groups. Such

constitute an adaptive codebook that changes very slowly along with movement of the
pieces of UE.
[0109] In step 2-3, the base station sets CSI-GRSs that are beamformed using the beamforming
matrices generated in step 2-2, and broadcasts the CSI-GRSs. Here, the CSI-GRSs are
GRSs beamformed using

and transmitted by sharing the same resources between groups, thereby reducing consumption
of RS resources.
[0110] In step 2-4, the pieces of UE measure channel information using the CSI-RSs transmitted
by the base station and to which the group-specific beamforming matrices are applied,
and report the channel information to the base station. Here, the channel information
can include at least one of SU-CQIs and MU-CQIs, short-term PMIs, and RIs.
[0111] Here, a method of determining the MU-CQIs in the channel information and a method
of signaling the channel information are the same as those in case of a fixed codebook
described above, and detailed description thereof will be omitted.
[0112] Lastly, in step 2-5, the base station finds an optimum UE combination on the basis
of the channel information, schedules the pieces of UE, and transmits data to the
pieces of UE on the basis of the scheduling.
[0113] When a base station performs optimum scheduling on the basis of MU-CQIs of UE, selected
pieces of UE have little inter-group interference. Thus, pieces of UE selected from
different groups can demodulate their data through DM-GRSs that are quasi-orthogonal
to each other and use the same resources. Interference between different groups can
be additionally reduced using a quasi-orthogonal sequence, and interference between
different users in the same group can be removed using an orthogonal sequence.
[0114] To reduce resource consumption, the aforementioned CSI-GRS and DM-GRS do not use
separate resources, but rather may be combined into one GRS and used. In other words,
the DM-GRS may serve as the CSI-GRS. In this case, when the UE is instructed to operate
in the SU-MIMO mode, it is possible to demodulate its physical downlink shared channel
(PDSCH) through the GRS. To solve this problem, the base station transmits quasi-orthogonal
DM-RSs based on SU-CQIs using separate resources in subframes in which the GRS for
CSI is transmitted at intervals of, for example, 5 ms, so that the UE demodulates
the PDSCH.
B) UE Grouping
1) Statistical Channel Information
[0115] This paragraph describes UE grouping according to statistical channel information
that is a core step of the above-described MIMO transmission and reception method
according to the present invention. First, a base station receives feedback of statistical
channel information through a CSI-RS, or obtains the statistical channel information
through an uplink SRS. The statistical channel information can have the following
forms.
- Transmit correlation matrix or channel covariance matrix
- Valid eigenvalue and eigenvector of transmit correlation matrix
- AS and AoD
- Long-term PMI denoting statistical channel information on UE
[0116] A transmit correlation matrix that is a statistical characteristic of a UE channel
is a statistical value that changes very slowly along with movement of UE. This is
because a scatterer environment changes only when UE moves. Also, MU-MIMO is generally
used by low-speed UE only. The simplest form of a transmit correlation matrix estimation
scheme is

in which the one-ring channel model is assumed.
2) UE Grouping Procedure
[0117] A summary of UE grouping is as follows. A base station classifies pieces of UE
gk having similar valid eigenvector (an eigenvector corresponding to a valid eigenvalue)
matrices
Ugk into one group, thereby creating a plurality of groups. Also, groups having high
orthogonality between their eigenvectors constitute one class.
[0118] While classes that are classified in this way use different time/frequency resources,
groups in one class are allocated the same time/frequency resources. The number of
classes is referred to as T.
[0119] A method of finding groups having high orthogonality between their eigenvectors can
be implemented in several ways. An eigenvector matrix
Ug of a group having high orthogonality should satisfy a relationship shown in Equation
8 below with an eigenvector matrix
Ug' of another group.

[0120] In this paragraph, a simple
Ug calculation method is proposed. First, in consideration of eigenvectors of pieces
of UE or distribution of ASs and AoDs, the base station estimates the number of classes
and the number of groups and reference angles of the respective classes. It is possible
to calculate AoDs of G-1 beam vectors orthogonal to the reference angles (i.e., a
total of G orthogonal beam vectors), group transmit correlation matrices are calculated
according to a formula of the one-ring channel model, and the corresponding group
eigenvector matrices
Ug are generated through singular value decomposition (SVD).
[0121] The base station measures similarity between the given class-specific group eigenvector
matrices and eigenvector matrices
Ui of the respective pieces UE through inner products of them, determines groups of
the most similar classes, and classifies the pieces of UE into the corresponding groups.
Similarity between an eigenvector of a UE correlation matrix and that of a group correlation
matrix can be defined as Equation 9 below.

[0122] Here, ∥

∥ is a Frobenius norm.
[0123] Here, group classification is rearranged by adjusting the initial number of classes
and the initial number of groups and a reference angle of a class whose similarity
value does not satisfy a reference value
α0, so that the similarity value satisfies the reference value. Such group classification
changes very slowly, and thus an increase in calculation complexity caused by the
change will be limited.
[0124] FIG. 4 is a conceptual diagram showing an example of UE grouping in a MIMO transmission
and reception method according to the present invention.
[0125] FIG. 4 shows how pieces of UE can be grouped according to the present invention in
the example of distribution of UE and scatterers shown in FIG. 2 above.
[0126] Referring to FIG. 4, circles drawn with dotted lines denote locations of pieces of
UE classified into class 1 and circles of scatterers, and circles drawn with solid
lines denote pieces of UE of class 2. Class 1 consists of four groups, and class 2
consists of three groups. Dotted straight lines and solid straight lines denote reference
angles used for generating orthogonal beams of the respective groups.
[0127] Thus, it is possible to see a result of UE grouping performed so that there are the
circles of pieces of UE belonging to each class with their centers located around
the corresponding dotted or solid straight line. Also, it is possible to see that
two circles filled with diagonal lines constitute one group in class 1.
[0128] When the total number of pieces of UE is not enough, the number of pieces of UE per
class decreases, and the number of pieces of UE per group also decreases in proportion
to the decrease. This results in deterioration of the frequency efficiency of the
MIMO transmission and reception method according to the present invention, but on
second thoughts, a small number of pieces of UE in a cell implies little system load,
which means that there is no problem in service even with low frequency efficiency.
[0129] In addition, since large-scale antenna MIMO technology such as the present invention
is intended to simultaneously provide service to many users using the same resources
and to improve quality of experience (QoE) by causing a system to bear overload at
peak time, it may be assumed that the number of pieces of UE is about ten times a
number s of layers simultaneously served using the same resources. Furthermore, in
case of multi-antenna UE, respective antennas may be regarded as separate users and
scheduled, and thus the assumption about s is realistic.
[0130] The UE grouping has been described above assuming a case in which rays of a transmission
signal transmitted to UE spreads as much as an AS. Meanwhile, when a scatterer such
as a skyscraper is around a base station, or in case of a micro cell base station,
rays of a transmission signal may be transmitted with two or more AoDs and ASs. In
this case, the corresponding UE belongs to two or more groups, is classified into
the groups and managed, and performs UE feedback necessary for the respective groups.
[0131] In addition, the UE grouping described above is under the assumption that a base
station knows statistical channel information on all pieces of UE. However, when the
assumption is not satisfied, the base station requires feedback of statistical channel
information from the pieces of UE for UE grouping. For example, in a method in which
the base station transmits a long-term CSI-RS and the pieces of UE feed back statistical
channel information on the basis of a fixed codebook or estimate and feed back ASs
and AoDs, the base station obtains the statistical channel information on the pieces
of UE. The base station performs the above-described UE grouping with reference to
the UE feedback.
[0132] At this time, by determination of the base station, UE may not be classified into
a group corresponding to an AoD fed back by the UE itself, but may be classified into
another class and group that are systematically more appropriate. Thus, in this case,
the base station should notify the UE of the class and group to which the UE belongs.
C) Group Beamfoming Matrix
1) Generation of Group Beamforming Matrix
[0133] A beamforming matrix of the corresponding group is generated from a universal set
or a subset of a group eigenvector matrix
Ug selected through the above-described UE grouping. In other words, when a rank (or
a column size) of the group beamforming matrix is made to be the same as
r* of the group eigenvector matrix, the group beamforming matrix is as Equation 10
below.

[0134] Such group beamforming matrices become quasi-orthogonal to each other through group
classification and satisfy Equation 8. Eventually, group beamforming matrices satisfy
Equation 8 and enable the present invention to perform large-scale MU-MIMO while minimizing
a load of RSs and UE feedback resources.
[0135] The aforementioned generation of a basic group beamforming matrix
Bg satisfies Equation 8 under the assumption that the above-described UE grouping is
appropriately performed and group eigenvectors
Ug are quasi-orthogonal to each other. However, when the number of active pieces of
UE in a base station is small and it is impossible to make a number T of classes large,
the UE grouping alone may not always generate groups that are quasi-orthogonal to
each other. In this case, the base station can forcibly make groups that are not orthogonal
to be orthogonal through a BD scheme, which will be described later.
2) Block Diagonalization
[0136] FIG. 5 is a conceptual diagram of BD in a MIMO transmission and reception method
according to the present invention.
[0137] With reference to FIG. 5, BD for a specific group g will be conceptually described.
[0138] In a vector space of a total of M dimensions, eigenvectors of G-1 groups other than
group g form a subspace (an ellipse 510 in the drawing) of
r*(
G-1) dimensions, which becomes interference of the other groups exerted on group g.
Then, a null space (a line 501) orthogonal to the subspace is made, and a subspace
(a line 503) formed by eigenvectors of a self-signal of
r* dimensions is projected to the null space. It is possible to know that the projected
self-signal subspace (a line 502) is orthogonal to the interference subspace.
[0139] In the next step, an eigenvector in the projected self-signal subspace is calculated.
The eigenvector forms an optimum beamforming matrix (which corresponds to eigen-beamforming
causing slight distortion, and thus can be referred to as being close to the optimum
in an implicit channel feedback-based MU-MIMO beamforming scheme) in a self-subspace
to which the eigenvector is projected while orthogonality with eigenvectors of the
other groups is maintained.
[0140] The only condition enabling the above-described BD is roughly

Also, estimation is made in advance so that as many groups as possible become orthogonal
to each other through UE grouping. For this reason, a very small part of all groups
interfere with each other, and BD is performed on the corresponding groups only. Thus,
it is possible to minimize loss caused by BD.
[0141] In this specification of the present invention, implicit UE feedback is mainly handled.
Thus, when a number K of active pieces of UE in a system is large enough,
s' =
b', and
Pg is as Equation 11 below.

[0142] Meanwhile, a case in which
s' <
b' due to a small number of active pieces of UE or determination of a scheduler is as
follows. It is assumed that a set of all active users corresponding to group g is

and an index set of a maximum of b' usable generalized beamforming (GBF) vectors is
{1,2,···,
b'}. A base station scheduler maps actually scheduled s' users in

to a subset

Thus, in this case,
Pg is presented as follows.

[0143] Here,
en is a b' dimensional column vector whose n
th element alone is 1 and whose other elements are 0, and

denotes an i
th element of a subset

.
[0144] Consequently, when BD is not used, beamforming according to the present invention
corresponds to eigen-beamforming as Equation 10, and Equation 2 is presented as Equation
13 below.

[0145] Here,
dg is a data symbol vector of the user set

selected by the scheduler, and
Pg is presented as Equation 11 or Equation 12.
[0146] Pg has been described above under the assumption of MU-MIMO. In case of SU-MIMO,
Pg can be a co-phasing factor such as a dual codebook of LTE, and also a more detailed
precoding matrix.
D) Reference Signal (RS)
1) CSI-RS
[0147] A CSI-RS in the present invention exists for feedback of statistical channel information,
and an RS for feedback of instantaneous channel information is a GRS to be described
below. Thus, when a base station can obtain enough statistical channel information
through an uplink SRS, no CSI-RS is necessary in the present invention.
[0148] If it is difficult to estimate statistical channel information using an SRS only,
when a maximum number M of transmitting antennas is considered to be 64 and there
will be no cell-specific RS (CRS) transmission of LTE in the future, resources used
for CRS transmission will be able to be used for CSI-RS transmission.
[0149] Such a CSI-RS is for UE to estimate and feed back statistical channel information
rather than instantaneous channel information, and may be transmitted for a much longer
period than an existing CSI-RS.
2) Group-specific RS (GRS)
[0150] GRSs proposed in the present invention are RSs specified for respective groups, and
are RSs multiplied by beamforming matrices, like an existing DM-RS (or UE-specific
RSs of LTE) of LTE-Advanced. Here, respective group beamforming vectors
bg,i (an i
th column vector of
Bg=[
bg,1,
bg,2,···,
bg,b']) are multiplied to generate
b' GRSs. Needless to say, in case of
s' <
b', only s' GRSs may be selected from among the
b' GRSs and generated to reduce RS overhead. In addition, GRSs of groups that belong
to one class through the above-described UE grouping and group beamforming matrix
generation process slightly interfere with each other, and thus can use the same resources
without interfering with each other by additionally applying a pseudo-random sequence,
like a DM-RS.
[0151] A GRS performs both of CSI-RS and DM-RS functions of LTE as follows.
(1) CSI-RS Function
[0152] The CSI-RS function performed by a GRS is intended to enable pieces of UE to feed
back instantaneous channel information. In the present invention, UE can estimate

through a GRS and perform implicit channel feedback such as a CQI, a PMI and RI on
the basis of

(2) DM-RS Function
[0153] The DM-RS function performed by a GRS is to implicitly transfer a beamforming (or
precoding) vector selected by a base station to UE, and to become an RS for DM. A
GRS can be regarded as a specific RS, which will be described later. In other words,
the group beamforming matrix
Bg provides beamforming vectors optimized for pieces of UE in a group, and thus the
base station has no reason to select a beamforming vector other than
Bg. Thus, it is all right for UE to regard that a transmission signal has been beamformed
through a PMI fed back by the UE itself, and it is not required to additionally transmit
a DM-RS to know a beamforming vector selected by the base station. In addition, even
when scheduling has not been performed according to a rank fed back by UE, the corresponding
PMI does not change, and the UE can know its rank and PMI through a simple detection
test without the help of the base station.
[0154] For example, when UE feeds back two CQIs and PMIs using rank 2, in order to know
how many ranks and which PMI are actually used for transmission by a base station,
the UE performs detection for each of three cases (a case in which a rank is rank
2 and thus both of PMI1 and PMI2 are used, a case in which a rank is rank 1 and PMI1
is used, and a case in which a rank is rank 1 and PMI2 is used), and then can know
a correct rank and PMI by calculating a post SINR.
[0155] It is apparent that a GRS can be an RS for coherent demodulation. All groups belonging
to one class can reuse the same GRS resources, and at this time, quasi-orthogonal
sequences are used according to the respective groups. Also, pieces of UE scheduled
for the same time in a group are identified using different orthogonal sequences.
For example, when four pieces of UE are scheduled in each group, an orthogonal sequence
having a sequence length of 4 is necessary.
[0156] A GRS resource location can use a resource location of an existing DM-RS. Also, unlike
in related art, resources of a GRS are not necessary as many as the number of scheduled
pieces of UE due to resource reuse between groups, but are required as many as a number
obtained by dividing the number of pieces of UE scheduled for the same time by the
number of groups. For example, when 16 pieces of UE are classified into four groups
and scheduled for the same time, four GRS resources rather than 16 GRS resources are
necessary (in case of assigning one layer per one piece of UE).
[0157] A case in which a GRS is used for the CSI-RS function has an advantage of higher
periodicity. While an existing CSI-RS has a minimum transmission period of 5 ms, a
(fixed rather than minimum) period of a GRS can be 5 ms or less. This is because a
GRS is transmitted in every subframe to which resources of the corresponding class
are allocated, like a DM-RS. In addition, while a DM-RS exists only when the corresponding
resources are allocated to UE, a GRS exists even when another piece of UE in the same
group is allocated the corresponding resources. Thus, there is another advantage in
that channel estimation can be more accurately performed using a DM-RS even when UE
is not allocated the corresponding resources.
[0158] Meanwhile, it is possible to separately prepare GRSs as a CSI-GRS and a DM-GRS according
to the types of a CSI-RS and a DM-RS of LTE-Advanced. In this case, there is a problem
that RS overhead is additionally required. Also, when a DM-GRS is separately prepared,
a base station can transmit the DM-GRS using a precoding matrix other than a GBF vector
fed back from UE, but the resultant benefit is determined to be very limited.
E) UE feedback
[0159] In this specification, implicit UE feedback will be mainly described, and explicit
UE feedback will be simply described at the end.
1) Eigenvector Matrix
[0160] As described above, when it is difficult to estimate a transmit correlation matrix
using an uplink SRS only, UE should estimate a transmit correlation matrix through
a CSI-RS. Thus, the UE estimates the transmit correlation matrix through the CSI-RS,
and feeds back information on a dominant eigenvector matrix
Ugk of the transmit correlation matrix in the following two methods.
- Explicitly feed back an estimated value of the eigenvector matrix Ugk through vector quantization.
- Extract an AS and an AoD from an estimated value of the eigenvector matrix Ugk, and implicitly feed back the AS and the AoD. A base station receives feedback of
an AS and an AoD, and can estimate Ugk under the assumption of the one-ring channel model. Here, using a well-verified super-resolution
algorithm such as MUultiple SIgnal Classification (MUSIC) and Estimation of Signal
Parameters via Rotational Invariance Technique (ESPRIT), it is possible to estimate
the AS and the AoD (or angle of arrival (AoA)) from a channel matrix. In this specification,
description of a detailed algorithm for extracting an AS and an AoD will be omitted.
2) Adaptive Codebook
[0161] As a codebook of implicit UE feedback for the present invention, an adaptive codebook
rather than a fixed codebook of LTE can be used. In other words, since beamforming
vectors constituting the codebook are specified for groups (equivalent to pieces of
UE), the beamforming vectors are different according to the respective groups and
classes and can very slowly change according to time (movement and activation/deactivation
of UE).
[0162] The adaptive codebook of the present invention can be presented as Equation 14 below.

[0163] Here, a codebook subset
C(t) corresponding to class t is as follows.


of each class codebook
C(t) consists of
b'(=
b/
G) beamforming vectors

As mentioned above, the adaptive codebook can be very slowly change according to
time, and an index indicating time is omitted.
[0164] Next, an adaptive codebook will be proposed according to a Rel. 10 dual codebook
appropriate for a cross-polarization antenna, and the required amount of PMI feedback
resources will be calculated. When a rank of UE is 1 (or when a base station assigns
only one layer to each piece of UE), an adaptive codebook of class t and group g is
as follows.

[0165] Here,
α is a co-phasing factor, and intended for coherent combining of co-polarization antenna
signals. Thus, in case of
b' = 4, PMI feedback resources of four bits are necessary. Even when a rank is 2 or
higher, it is possible to design an adaptive codebook with a very limited combination,
like an LTE dual codebook, to maintain the required PMI resource amount of four bits.
In this case, there is surely a tradeoff between system capacity and feedback load.
A codebook of rank 2 or higher should be designed through not only a logical basis
but also more realistic performance analysis, such as a system-level simulation (SLS),
and thus will be omitted in the present conceptual design.
[0166] Unless imperatively necessary, a superscript t denoting a class will be omitted in
all equations for convenience while the equations are described in this specification.
3) Fixed Codebook
[0167] As a codebook of the present invention in another form, a fixed codebook of can be
designed like in LTE. According to the above-described adaptive codebook, assuming
that a base station knows transmit correlation matrices of all pieces of UE, the base
station performs UE grouping, designs a codebook optimized for the pieces of UE currently
in a cell, and transmits the codebook using a GRS, and the pieces of UE measure the
codebook and feed back beamforming vectors best for themselves. When the base station
estimates the transmit correlation matrix of the pieces of UE using SRSs only, the
pieces of UE do not even need to know their transmit correlation matrices.
[0168] On the other hand, according to the fixed codebook, without assuming that a base
station knows transmit correlation matrices of all pieces of UE, a predetermined limited
codebook is designed, and UE first estimates its transmit correlation matrix through
CSI-RSs of considerably long periods, selects a beamforming vector best for the UE
itself on the basis of the codebook, and feeds back the beamforming vector. This codebook
has a characteristic that it is designed to satisfy similarity between UE and a specific
group and orthogonality between groups.
[0169] For example, when ASs of UE are classified into four stages including 5 degrees,
10 degrees, 20 degrees, and more than 20 degrees, the number of groups that can be
formed in one sector having a range of 120 degrees (i.e., that are quasi-orthogonal)
at each AS can be 4, 3, 2, or 1. In other words, assuming that the AS is 5 degrees,
four beamforming matrices corresponding to four groups are generated in one sector.
A method of forming a set of such beamforming matrices (i.e., a codebook) can be designed
under the assumption of, for example, the one-ring channel model.
[0170] Next, codebook design will be described. To design a good codebook, a measure should
be clearly defined. For example, in this specification, a measure of orthogonality
is defined as Equation 17 below.

[0171] Here,

and the smaller the value, the higher the orthogonality between two groups g and
h. In codebook design, it is important to carefully determine an AoD set Θ
(t) of each group so that eigenvectors
Ug of groups become quasi-orthogonal to each other. According to a given AS and the
number of groups, an optimum Θ
(t) that minimizes the value of Equation 17 can be calculated using Equation 18 below.

[0172] A measure for calculating the optimum Θ
(t) is to minimize the sum of orthogonalities between all groups of class t.
[0173] A Θ
(t) design method in case of an AS being 10 degrees will be described as an example according
to the aforementioned measure. In this case, to determine three group AoDs, a reference
angle or an anchor angle
θref of around 0 degree that becomes a reference is determined. In this case, a range
of the reference angle becomes 40 degrees (120/3) by dividing 120 degrees of one sector
by a number G of groups, and the reference angle has a value of -20 degrees to 20
degrees. When only an AoD of one case of the reference angle being 0 degree to 20
degrees is calculated using a symmetry characteristic of Θ
(t), an AoD of the other side also is easily calculated. When the range from 0 degree
to 20 degrees is divided by 16, 16 reference angles
θref are obtained. When one of the 16 reference angles is selected, the other two AoDs
can be given as Equation 19 below.

[0174] Here,
δ1,
δ2 each can have a range from -5 degrees to 5 degrees and a granularity of 1 degree.
Thus, upon calculation of the AoD set Θ
(t), the number of cases is about 1,936 (=16*11*11) or less at most. Considering an AoD
of the other side in the same way, it is possible to calculate a total of 32 fixed
AoD reference angles and the other two AoDs
θ1,
θ2 corresponding to each of the 32 fixed AoD reference angles.
[0175] Using AoD Θ
(t) calculated from the given AS, the number of transmitting antennas, distance between
the antennas, and the equations, the eigenvector matrix
Ug of each group can be calculated through the one-ring channel model. In general,
Ug calculated in this way are not accurately orthogonal to each other. Since the core
of implementation according to the present invention is orthogonality between groups,
it is necessary to improve orthogonality between groups through BD. Thus, a beamforming
matrix
Bg is calculated through BD of the matrices
Ug calculated in advance.
[0176] Meanwhile, long-term PMI feedback caused by the above-described fixed codebook is
classified into the following two types. First, when an AS of UE is divided into four
AS ranges, two bits are required. When each AS is 10 degrees, the number of cases
of the beamforming matrix
Bg requires seven bits for the AS including 32 reference angles
θref and 2-bit information indicating a belonging group among three groups. Since the
AS and
Bg are very slowly changing statistical characteristics, feedback of them has a very
long period, or they may be fed back only when there is a change in them.
4) MU-CQI
[0177] Unlike the above-described long-term UE feedback, this channel information feedback
is instantaneous feedback. CQI feedback of LTE is a SU-CQI based on SU-MIMO. In other
words, a CQI having no information on interference caused by another piece of UE scheduled
on the same resources is fed back. On the other hand, it is well known that a MU-CQI
in which interference caused by another piece of UE is taken into consideration is
necessary in MU-MIMO, and benefit of the MU-CQI can be very much. For this reason,
in existing LTE, a MU-CQI is approximately estimated by, for example, calculating
a predicted MU-CQI for implementation, but the estimated MU-CQI may be significantly
different from an accurate MU-CQI.
[0178] A GRS structure of the present invention facilitates MU-CQI feedback of UE. As mentioned
above, UE
gk can estimate

that is an inner product of beamforming vectors of a group to which the UE belongs
and a channel through a GRS. Assuming that a total of
b' beamforming vectors are simultaneously transmitted, the UE measures a MU-CQI corresponding
to an SINR as follows, and feeds back the MU-CQI to a base station.

[0179] Here,
σ2 denotes background noise and interference of other cells. The base station can cause
only UE that measures a higher MU-CQI than a specific reference value to perform feedback.
The above equation is under the assumption of rank 1 of co-polarization, and in case
of cross-polarization and rank 2 or higher, a post SINR in which a reception algorithm
such as minimum mean-square error (MMSE) detection or turbo reception is taken into
consideration should be calculated.
[0180] The MU-CQI is efficient because of a high probability that the base station will
simultaneously transmit all of the
b' beamforming vectors. This is cause
bg,m is a beamforming vector specified for pieces of UE belonging to a group, and there
are
b' candidate beams, which have a very smaller number than a fixed beam method (when
M=8 like in LTE Rel. 10, W1 consists of four beams, which are substantially eight
beams in case of a cross-polarization antenna, and when M increases to 32, W1 consists
of 32 beams. On the other hand, since the present invention has a characteristic that
quasi-orthogonality between groups is maintained,
b' = 4 in general when M=32. Meanwhile, when the number of pieces of UE belonging to
a specific group is small, the base station can select
s' beamforming vectors, which is less than
b'(
s' <
b'), among
b' beamforming vectors and simultaneously transmit the
s' beamforming vectors or limit beamforming vectors to two or three specific combinations
of

In this case, there can be the following ideas.
- The base station should notify UE of which s' beams (s' beams selected from among b' beams can vary over time) are used, or which combination is used.
- As mentioned in the adaptive codebook method among the UE feedback methods, a codebook
is limited, like in LTE, so that only a fixed specific combination is used.
[0181] The number of bits required for feeding back a MU-CQI can be the same as a value
of an existing LTE SU-CQI.
[0182] Meanwhile, a PMI to be fed back by UE corresponds to an index m that maximizes Equation
20 above.
5) Group Interference Measurement
[0183] MU-CQI calculation of Equation 20 above is under the assumption that interference
of other groups is very slight. Meanwhile, when there is a significant disagreement
between a beamforming vector
Bg (i.e.,
Ug) of a group and an eigenvector
Ugk of UE
gk, the corresponding UE may encounter considerable interference from other groups. To
solve such a potential problem, it is possible to use the fact that, when a specific
beam becomes a strong interference signal, the corresponding

can be estimated because the UE can not only receive a GRS of its group but also
receive GRSs of all groups. At this time, the UE needs to remove beams

of its group from the received signals and estimate

To this end, a base station should transmit a control signal for receiving GRSs of
all groups to all pieces of UE belonging to a specific class, or make a GRS sequence
determination formula in which a group identifier (ID) as well as a cell ID are included.
[0184] When the UE measures and considers interference of other groups in MU-CQI calculation
as described above, Equation 20 is replaced by Equation 21 below.

[0185] Here, in

only group interference exceeding a specific reference value is actually taken into
consideration. Such a MU-CQI can be regarded as a safety factor for when unexpected
considerable group interference is in a MU-MIMO system according to the present invention.
6) RI
[0186] As described above, the present invention uses adaptive beams optimized for MU-MIMO
in a scenario in which there are a large number of transmitting antennas and active
pieces of UE, and thus a probability that a base station will schedule all MIMO resources
for MU-MIMO becomes very high. In such MU-MIMO, the base station generally limits
a rank of UE to 1 or 2 to increase system capacity. On the other hand, when there
are a small number of pieces of UE, the base station may cause the pieces of UE to
perform feedback using SU-CQIs to increase system capacity.
[0187] When a rank set by the base station is 2, UE feeds back CSI corresponding to two
code words, and thus the base station can see feedback of pieces of UE belonging to
each group and determine whether to perform transmission to scheduled UE using actual
rank 1 or 2.
7) Explicit UE Feedback
[0188] Explicit UE feedback is a method of feeding back direct information on a channel
matrix instead of a PMI. Each piece of UE quantizes and feeds back its modified channel
vector

to a base station. An example of a method of quantizing a channel vector is a quantization
method using channel direction information (CDI).
[0189] The base station calculates a precoding matrix
Pg according to an algorithm (e.g., zero-forcing (ZF) beamforming) using explicit channel
feedback of UE and CQI information obtained by measuring interference of other cells,
and performs MU-MIMO using the precoding matrix
Pg. In this case, a difference with the implicit UE feedback method is that a DM-RS
is additionally necessary besides a GRS serving as a CSI-RS.
F) Downlink Control Signal
[0190] In addition to an existing downlink control signal of LTE-Advanced, a new control
signal as described below is necessary. The control signal is about CSI measurement
resources (i.e., a scheduling resource candidate).
[0191] A large-scale transmitting antenna system simultaneously accommodates far more active
pieces of UE than an existing system. An LTE system has a basic mode in which UE is
caused to measure and report CSI on an entire frequency band. However, when the number
of active pieces of UE becomes very large, it may be difficult for the system to take
such CSI feedback overhead. To solve this problem, the present invention can apply
a method of allocating CSI measurement resources according to classes.
[0192] In an LTE-Advanced downlink MIMO transmission method, a base station sends CSI measurement
resources of UE using a radio resource control (RRC) message, and the information
is not changed while the UE is in an active state. On the other hand, in the present
invention, pieces of UE are classified (pre-scheduled) according to classes, and the
corresponding class of UE can be changed according to movement of the UE or load balancing
between classes.
[0193] In addition, since a base station allocates different resources according to classes,
CSI measurement and scheduling resources can be changed when a class of UE is changed
while the UE is in the active state. Unlike in LTE-Advanced, CSI measurement resources
can be changed in the active state, and thus a CSI measurement resource control signal
according to the present invention accords with characteristics of a media access
control (MAC) message rather than an RRC message.
[0194] FIG. 6 is a conceptual diagram of an example of allocation of CSI measurement resource
or scheduling resource candidates according to the present invention.
[0195] FIG. 6 is a case in which the number of classes is four. This shows an example of
a case in which separate resources are allocated according to classes. For example,
resources 601 filled with lower left-to-upper right diagonal lines may be allocated
to class 1, and resources 603 filled with upper left-to-lower right diagonal lines
may be allocated to class 3. The number of classes and an allocated resource size
can vary semi-statically (about several minutes to tens of minutes) according to distribution
of UE.
[0196] According to the present invention, a CSI measurement resource control signal can
be signaled in the following two methods.
1) Case of Using Class ID (RNTI)
[0197] A base station transfers all class-specific CSI measurement resource or scheduling
resource maps/modes to respective pieces of UE through MAC messages, and notifies
the respective pieces of UE of their class radio network temporary identifiers (RNTIs).
When a class of UE is changed along with movement of the UE, etc., the base station
only signals the changed class RNTI using a MAC message, and the UE can know resources
of the corresponding class. Also, using the class RNTI, it is possible to perform
multicast according to classes and groups.
2) Case of Using No Class ID (RNTI)
[0198] A base station notifies pieces of UE of CSI measurement resources of classes corresponding
to the respective pieces of UE using MAC messages, and notifies UE of CSI measurement
resources of a class changed along with movement of the UE, or so on.
[0199] In case 1) above, UE requires a group ID (RNTI) to know its GRS sequence. The base
station makes a GRS sequence determination formula including a cell ID and a group
ID, and thereby can cause the UE to know the GRS sequence using only a cell ID and
a group ID. Since different resources are used for respective classes, it is unnecessary
to divide the GRS sequence according to class IDs. Also, in the present invention,
an adaptive codebook whereby a GRS is specified for UE is used, and thus a PMI is
mapped to a GRS sequence in a one-to-one fashion. As described above regarding a GRS,
UE can implicitly know its beamforming matrix in the present invention. Thus, a GRS
sequence needs not to be dynamically assigned through a physical downlink control
channel (PDCCH), unlike an existing DM-RS sequence.
[0200] Meanwhile, in the present invention, it may be unnecessary for a base station to
explicitly notify UE of RI through a PDCCH like a PMI. The base station determines
the number of layers to be actually transmitted to the UE with reference to RI fed
back by the UE, and transmits the layers. The UE calculates a post-SINR through a
process such as a simple detection test for a PMI, and thereby can know the number
of layers actually transmitted by the base station.
G) Scheduling
[0201] In the present invention, a group can be regarded as a virtual sector based on group
classification. In other words, a base station may perform scheduling separately according
to respective classes and groups. As described above regarding a MU-CQI, the base
station receives feedback of MU-CQIs from all active pieces of UE belonging to a specific
group. Scheduling performed by the base station is a process of finding a combination
of pieces of UE that maximizes a utility function in which the MU-CQIs are multiplied
by weights denoting the fairness of the respective pieces of UE. For example, even
when some pieces of UE feed back the same beamforming vector (PMI) or a plurality
of beamforming vectors, weights are multiplied according to the respective pieces
of UE (when specific UE has a large amount of accumulated received data, the corresponding
weight generally decreases in proportion to the large amount for the sake of fairness),
and a combination of pieces of UE that maximizes the utility function may be found.
H) 3D Beamforming
[0202] Thus far, in this specification, beamforming in which a large-scale transmitting
antennas are arranged along a horizontal axis has been taken into consideration. In
addition to this, a large-scale transmitting antenna system in which an antenna arrangement
is extended along a vertical axis can also be taken into consideration, and a beamforming
technique using both of horizontal-axis and vertical-axis spaces is referred to as
three-dimensional (3D) beamforming.
[0203] FIG. 7 is a conceptual diagram of a 3D beamforming technique, in which a macro base
station located in an urban skyscraper performs beamforming using both of horizontal-axis
and vertical-axis spaces.
[0204] This section introduces a 3D beamforming technique by which the concept of MIMO transmission
of the present invention in which the foregoing horizontal-axis beamforming is taken
into consideration is extended to the vertical axis as well.
[0205] First, a CSI-RS structure and a PMI feedback scheme for 3D beamforming will be described
in brief.
[0206] In case of a long-term CSI-RS structure, even when a base station has a plurality
of arrays along each of the horizontal axis and the vertical axis, there can be one
eigenvector matrix, which is a statistical channel characteristic of UE, along each
of the horizontal axis and the vertical axis because the arrays are two-dimensional
(2D) antenna arrays. Thus, a long-term CSI-RS needs not to be in every 2D antenna
element, and it is all right to transmit the long-term CSI-RS using one row as the
horizontal axis and one column as the vertical axis.
[0207] In case of a short-term CSI-RS structure, an eigenvector matrix of UE has a structure
as described above, but a short-term fading channel may have a plurality of different
arrays along each of the horizontal axis and the vertical axis. Thus, a short-term
CSI-RS needs to be transmitted for every 2D antenna element.
[0208] In case of long-term PMI feedback, a long-term PMI consists of one long-term PMI
(a horizontal-axis class and a group ID) as the horizontal axis and one long-term
PMI (a vertical-axis class and a group ID) as the vertical axis according to a long-term
CSI-RS.
[0209] In case of short-term PMI feedback, since short-term PMIs may vary according to all
2D antenna elements, a plurality of short-term PMIs are fed back along the horizontal
axis and a plurality of short-term PMIs are fed back along the vertical axis.
1) Channel Model
[0210] A column (horizontal axis) size of a 2D antenna array is M, a row (vertical axis)
size is N, and the drawing shows an example of 3D beamforming for one class. In this
specification, only one class is taken into consideration for convenience, and it
is assumed that active pieces of UE can be spatially classified into L vertical groups
along the vertical axis, and G horizontal groups along the horizontal axis. Transmit
correlation matrices of the vertical axis and the horizontal axis are
RV,l and
RH,g, respectively. These vertical and horizontal transmit correlation matrices are presented
through eigendecomposition as follows.

[0211] In this case, when a Kronecker (more accurately, one-ring) channel model is extended
to a 3D channel model, the 3D correlation matrix
Rl,g is presented as a Kronecker product as follows.

[0212] Using the 3D transmit correlation matrices, a channel vector of UE belonging to vertical/horizontal
groups g and 1 is presented as Equation 24 below.

2) Beamforming Matrix
[0213] A 3D transmit vector is presented as Equation 25 below.

[0214] Here,
BH,
BV,
PH, and
PV are
M×
bH, N×
bV, bH×
sH, bV×
sV dimension matrices respectively, and
d is an
sHsV dimension data symbol. As shown in channel model Equation 24 and Equation 25 above,
beamfoming/precoding of the horizontal axis can be performed independently from beamfoming/precoding
of the vertical axis.

[0215] Using the relationship of Equation 26 above, a reception vector of vertical/horizontal
groups 1 and g is presented as Equation 27 below.

[0216] Here,
BH = diag(
BH,l,···,
BH,G) and
BV = diag(
BV,l,···,
BV,L). Like in a 2D channel, when interference between different vertical/horizontal groups
1 and g becomes insignificant due to UE grouping, the following equation is satisfied,
and an approximately equal sign in the above equation is valid.

[0217] According to the above equation, an optimum 3D beamforming matrix is as follows,
like a 2D beamforming matrix according to the present invention.

3) Codebook
[0218] Groups for 3D beamforming correspond to vertical/horizontal-axis groups obtained
by subdividing a (horizontal axis) group for 2D beamforming, and a codebook of class
t can be presented to include the vertical axis as follows.

[0219] As shown in Equation 25, a 3D beamforming matrix is presented as follows.

[0220] Here,
BH,g, BV,l are given by Equation 29. Thus, in case of rank 1 transmission to a cross-polarization
antenna,

in Equation 30 is as follows, like in Equation 16.

[0221] For example, when

the PMI is presented using five bits. As described in 2D beamforming, in case of
rank 2 or higher, a limited combination selected from among all possible combinations
should be determined.
[0222] Lastly, UE grouping, GRS, UE feedback, etc. are naturally extended to the same concepts
as in 2D beamforming, and will not be specified in this specification.
FDD-Based Uplink MIMO Transmission and Reception Method According to Present Invention
[0223] Extension of the above-described concept of FDD-based downlink MIMO transmission
to uplink MU-MIMO transmission will be described below.
A) Uplink MIMO Reception Signal
[0224] It is assumed below that all pieces of UE have N multiple antennas, and each transmit
Ns data streams for convenience. In this case, in uplink MU-MIMO, a received signal
of a base station is as follows.

[0225] Here,
Pi is an N × Ns dimensional precoding matrix, and
ui is an Ns dimensional data symbol vector of an i
th piece of UE. In this uplink system, s denotes the number of pieces of UE scheduled
by the base station.
B) Characteristics of Uplink MIMO
[0226] The FDD-based downlink large-scale antenna MU-MIMO system described above has the
problem of RS and CSI feedback, and the present invention is mainly intended to solve
the problem. Meanwhile, unlike the downlink large-scale antenna MU-MIMO system, an
uplink large-scale antenna MU-MIMO system has the following problems.
1) Complexity of System Calculation
[0227] As mentioned above, a large-scale antenna system can solve the problem of overload
on a system crowded by a large number of users at peak time. This means a case in
which data transmission and reception activities of users are very active compared
to an existing system and user population in a cell. For this reason, a major problem
of an uplink large-scale antenna MU-MIMO system is calculation complexity.
[0228] In uplink MU-MIMO, a base station can obtain a much better estimated CSI value than
downlink MU-MIMO through an SRS of UE, and a receiving end can perform MU-MIMO through
the estimated CSI value.

[0229] When orthogonality between instantaneous channels of two or more pieces of UE is
ensured in existing uplink MU-MIMO, that is, when Equation 34 above is satisfied,
the pieces of UE are scheduled through MU-MIMO.
[0230] In this case, to calculate orthogonality between instantaneous channels of all active
pieces of UE, the base station should calculate an inner product of an M-dimensional
vector

times. Thus, when M and K are large as in a large-scale antenna system, calculation
complexity becomes excessively high. Also, it is difficult to use a detection algorithm
such as MMSE detection other than maximal ratio combining (MRC) so as to obtain better
performance.
[0231] Thus, the FDD-based uplink MIMO transmission and reception technology according to
the present invention is intended to perform uplink MU-MIMO while maintaining calculation
complexity of a system to a practicable level.
2) Preservation of Orthogonality of Uplink/downlink Channel Correlation Matrices
[0232] In extension of the concept of the downlink MIMO transmission and reception method
according to the present invention to the uplink MU-MIMO transmission and reception
method, it will be very useful that pieces of UE classified into one group in a downlink
are also classified into one group in an uplink to perform MU-MIMO, or vice versa.
This is because it is possible to reduce calculation complexity of a base station
for UE grouping to the half. As a result, orthogonality between transmit correlation
matrices in a downlink can be preserved as orthogonality between receive correlation
matrices in an uplink, which can be described through reference literatures including
"3GPP RANI contribution, R1-092024, Ericsson, 2009" and so on.
C) Precoding Matrix
[0233] A large-scale transmitting antenna MIMO system denotes that an antenna of a base
station may be very larger than that of an existing system. Thus, the downlink MU-MIMO
transmission method needs various changes as described in the previous chapter. On
the other hand, a row dimension of an uplink precoding matrix is limited by a number
N of antennas of UE, and N is generally limited to two to four according to a limitation
on the physical size of the UE. Also, since in uplink MU-MIMO, a base station determines
a precoding matrix through autonomous calculation and signals the precoding matrix
to UE, the uplink MU-MIMO is the same as an uplink MU-MIMO method of an existing LTE
system, and the same precoding matrix may be used.
[0234] The uplink MIMO transmission and reception method causes the base station to have
a reception signal vector
vg of a group as shown below through uplink group classification like downlink group
classification, or inter-group orthogonality preservation of the previous paragraph.

[0235] Here, s' denotes the number of scheduled pieces of UE among pieces of UE in group
g, and

is a modified b' × N dimensional channel matrix. In case of a large-scale antenna
system, b' << M, and the calculation complexity of a system can be reduced.
[0236] Meanwhile, an uplink scheduler of the base station calculates an SINR of Equation
20 above to select a precoding matrix.
TDD-Based MIMO Transmission and Reception Method According to Present Invention
A) TDD Downlink MIMO Transmission and Reception Method
[0237] A basic MIMO operation procedure of a time-division duplex (TDD) system is as follows.
- (1) A base station obtains downlink channel matrix information using an uplink SRS.
- (2) UE calculates and reports a CQI through a CRS or a CSI-RS.
- (3) The base station determines a precoding matrix, transmits a DM-RS, and signals
scheduling information.
[0238] The TDD-based downlink MIMO transmission and reception technique and the FDD-based
downlink MIMO transmission and reception technique are basically the same, except
whether a base station can obtain channel information using uplink/downlink channel
reciprocity.
[0239] In this specification, only a portion of the TDD-based downlink MIMO transmission
and reception method different from the FDD-based downlink MIMO transmission and reception
method will be described on the basis of a LTE TDD scheme.
1) DM-RS
[0240] The FDD-based downlink MIMO transmission and reception method according to the present
invention is a MU-MIMO method based on implicit channel information feedback, and
a codebook according to the FDD-based downlink MIMO transmission and reception method
is based on a GRS.
[0241] On the other hand, since a base station can know a relatively accurate channel matrix
in TDD, no codebook is necessary, and the base station determines a beamforming matrix
Bg and a precoding matrix
Pg. Thus, an existing DM-RS is necessary, unlike in an FDD scheme. A major difference
from a DM-RS of LTE is that in the present invention, G groups share DM-RS resources
through UE grouping and beamforming to maintain realistic DM-RS overhead.
2) CQI Feedback
[0242] In the TDD scheme, a CQI serves to measure interference of other cells and background
noise and cause UE to report the interference and background noise to a base station.
Thus, the CQI has different characteristics from a CQI for determining an actual modulation
and coding scheme (MCS) on the basis of a codebook as in the above-described FDD scheme.
3) Precoding Matrix
[0243] In the TDD-based downlink MIMO transmission and reception method, a base station
performs UE grouping using a transmit correlation matrix of a channel matrix to generate
beamforming matrices
Bg according to groups, and generates modified channel vectors

according to pieces of UE of each group. Using the channel vectors, it is possible
to perform precoding for pieces of UE belonging to each group according to an algorithm.
[0244] For example, ZF beamforming can be used, and for pieces of multi-antenna UE, a BD
or block triangularization (BT) algorithm can be used.
B) TDD Uplink MIMO Transmission and Reception Method
[0245] There is no difference between a TDD-based uplink MIMO transmission and reception
method and the FDD-based uplink MIMO transmission and reception method. Thus, it will
be all right to refer to the FDD-based uplink MIMO transmission and reception method
described above.
[0246] While the invention has been shown and described with reference to certain exemplary
embodiments thereof, it will be understood by those skilled in the art that various
changes in form and details may be made therein without departing from the spirit
and scope of the invention as defined by the appended claims.